An Unsupervised Learning Approach for Spectrum Allocation in Terahertz
Communication Systems
- URL: http://arxiv.org/abs/2208.03618v1
- Date: Sun, 7 Aug 2022 02:14:13 GMT
- Title: An Unsupervised Learning Approach for Spectrum Allocation in Terahertz
Communication Systems
- Authors: Akram Shafie, Chunhui Li, Nan Yang, Xiangyun Zhou, and Trung Q. Duong
- Abstract summary: We propose a new spectrum allocation strategy, aided by unsupervised learning, for terahertz communication systems.
We first formulate an optimization problem to determine the optimal sub-band bandwidth and transmit power.
We then propose the unsupervised learning-based approach to obtaining the near-optimal solution to this problem.
- Score: 31.263991262752498
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We propose a new spectrum allocation strategy, aided by unsupervised
learning, for multiuser terahertz communication systems. In this strategy,
adaptive sub-band bandwidth is considered such that the spectrum of interest
can be divided into sub-bands with unequal bandwidths. This strategy reduces
the variation in molecular absorption loss among the users, leading to the
improved data rate performance. We first formulate an optimization problem to
determine the optimal sub-band bandwidth and transmit power, and then propose
the unsupervised learning-based approach to obtaining the near-optimal solution
to this problem. In the proposed approach, we first train a deep neural network
(DNN) while utilizing a loss function that is inspired by the Lagrangian of the
formulated problem. Then using the trained DNN, we approximate the near-optimal
solutions. Numerical results demonstrate that comparing to existing approaches,
our proposed unsupervised learning-based approach achieves a higher data rate,
especially when the molecular absorption coefficient within the spectrum of
interest varies in a highly non-linear manner.
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